基于词汇特征的阿拉伯语历史短文本作者归属

Siham Ouamour-Sayoud, H. Sayoud
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引用次数: 30

摘要

在本文中,作者调查了十位古代阿拉伯旅行者撰写的几篇简短历史文本的作者身份:该阿拉伯语数据集由作者于2011年收集,称为AAAT数据集。本文利用词语、词大图、词三角图、词四图和罕见词等不同的词汇特征,对这些阿拉伯语文本进行了作者归属实验。此外,还采用了7种不同的分类器,分别是:曼哈顿距离、余弦距离、Stamatatos距离、Camberra距离、多层感知器(MLP)、基于顺序最小优化的支持向量机(SMO-SVM)和线性回归。针对评价任务,利用不同的引用特征和分类器,在AAAT数据集上进行了作者归属实验。结果表明,作者归因的最优分数为80%。此外,这项调查还揭示了有关阿拉伯语,特别是短文本的有趣结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Authorship Attribution of Short Historical Arabic Texts Based on Lexical Features
In this paper the authors investigate the authorship of several short historical texts that are written by ten ancient Arabic travelers: this Arabic dataset, which was collected by the authors in 2011, is called AAAT dataset. Several experiments of authorship attribution are conducted on these Arabic texts, by using different lexical features such as words, word-big rams, word-trig rams, word-tetra grams and rare words. Furthermore, seven different classifiers are employed, namely: Manhattan distance, Cosine distance, Stamatatos distance, Camberra distance, Multi Layer Perceptron (MLP), Sequential Minimal Optimization based Support Vector Machine (SMO-SVM) and Linear Regression. For the evaluation task, several experiments of authorship attribution are conducted on the AAAT dataset by using the different quoted features and classifiers. Results show good attribution performances with an optimal score of 80% of good authorship attribution. Moreover, this investigation has revealed interesting results concerning the Arabic language and more particularly for the short texts.
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